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Learning Robust Distance Metric with Side Information via Ratio Minimization of Orthogonally Constrained l_(2,1)-Norm Distances

机译:通过比率最小化正交约束的L_(2,1) - 距离的比率,学习鲁棒距离度量

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Metric Learning, which aims at learning a distance metric for a given data set, plays an important role in measuring the distance or similarity between data objects. Due to its broad usefulness, it has attracted a lot of interest in machine learning and related areas in the past few decades. This paper proposes to learn the distance metric from the side information in the forms of must-links and cannot-links. Given the pairwise constraints, our goal is to learn a Mahalanobis distance that minimizes the ratio of the distances of the data pairs in the must-links to those in the cannot-links. Different from many existing papers that use the traditional squared l_2-norm distance, we develop a robust model that is less sensitive to data noise or outliers by using the not-squared l_2-norm distance. In our objective, the orthonormal constraint is enforced to avoid degenerate solutions. To solve our objective, we have derived an efficient iterative solution algorithm. We have conducted extensive experiments, which demonstrated the superiority of our method over state-of-the-art.
机译:旨在学习给定数据集的距离度量的度量学习,在测量数据对象之间的距离或相似度方面起着重要作用。由于其广泛的实用性,它在过去几十年中吸引了对机器学习和相关领域的许多兴趣。本文建议以必要链接的形式从侧面信息中学习距离度量,并不能链接。鉴于成对约束,我们的目标是学习Mahalanobis距离,最小化必须链接到无法链接中的数据对中的数据对的距离比率。不同于许多使用传统平方L_2-NOM距离的现有论文,我们通过使用非平方L_2-NOM距离开发对数据噪声或异常值不太敏感的强大模型。在我们的目标中,强制执行正常的约束,以避免退化解决方案。要解决我们的目标,我们派生了一种高效的迭代解决方案算法。我们进行了广泛的实验,这证明了我们对最先进的方法的优势。

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